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ML Articles Reading Notes

ML Articles Reading Notes*

Notes in chronological order: archive

Fundamentals

  • Shalev-Shwartz 2014, Understanding Machine Learning: from Theory to Algorithms
    • Chapter 3: PAC learning, notes
    • Chapter 4: Learning via Uniform Convergence, notes
    • Chapter 5: No Free Lunch and Error Decomposition, notes
    • Chapter 6: VC Dimension, notes
    • Chapter 7: Nonuniform Learnability and SRM, notes
  • Cucker Zhou 2007, Learning Theory: an approximation viewpoint
    • Chapter 1: The Framework of Learning, notes
    • Chapter 2: Basic Hypothesis Spaces, notes
  • Murphy 2012, Machine Learning: a probabilistic approach
    • Chapter 3: Generative Models for Discrete Data, notes
    • Chapter 10: Directed Graphical Models, notes
  • Ng Jordan, On Discriminative vs. Generative classifiers: a comparison of logistic regression and naive Bayes, notes

Information Theory

  • Csiszár 2004: Information Theory and Statistics, a tutorial
    • Chapter 1: Preliminaries, notes
    • Chapter 2: Large deviations, hypothesis testing, notes

Statistics

Generalization Theory

Transfer Learning

Unsupervised Learning

Optimization

  • Jain Kar 2017, Non-convex Optimization for Machine Learning
    • Chapter 1: Introduction, notes
    • Chapter 2: Mathematical Tools, notes
    • Chapter 4: Alternating Minimization, notes
    • Chapter 5: EM Algorithm, notes
  • Salimans 2017: Evolution Strategies as a Scalable Alternative to Reinforcement Learning, notes
  • Lehman 2017: ES Is More Than Just a Traditional Finite-Difference Approximator, notes
  • Zhang 2017: On the Relationship Between the OpenAI Evolution Strategy and Stochastic Gradient Descent, notes

*The phrasing in these notes are sometimes copied directly from the texts. Other times, the notes diverge quite a bit.

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